Effective approach of face mask position detection and recognition

Om Pradyumana Gupta, Arun Prakash Agarwal, Om Pal
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Abstract

During recent COVID-19 pandemic across the world, face masks became necessary to stop the spread of infection. This has led to challenges with effective detection and recognition of human faces using the existing face detection systems. This paper proposes a Convolutional Neural Network (CNN) based face mask recognition system, which offers two solutions—recognition of the person wearing face mask and position of face mask i.e., whether the mask is correctly worn or not. The proposed model could play instrumental role of face recognition. In the first stage, with the help of Viola-Jones algorithm, the model detects the position of the face mask. In the second stage, we identify the person with by a modified pre-trained face mask recognition DeepMaskNet model facilitates in identifying the person. The proposed model achieves an accuracy of 94% in detecting the face mask position and 99.96% in identifying the masked person. Lastly, a comparison with the existing models is detailed, proving that the proposed model achieves the highest greater performance.
人脸面具位置检测与识别的有效方法
在最近 COVID-19 大流行期间,全球各地都需要佩戴口罩来阻止感染的传播。这给现有的人脸检测系统有效检测和识别人脸带来了挑战。本文提出了一种基于卷积神经网络(CNN)的人脸面具识别系统,它提供了两种解决方案--识别佩戴人脸面具的人和人脸面具的位置,即面具是否正确佩戴。所提出的模型可以在人脸识别中发挥重要作用。在第一阶段,借助 Viola-Jones 算法,模型可以检测出人脸面具的位置。在第二阶段,我们通过经过修改的预训练人脸面具识别 DeepMaskNet 模型来识别人脸。所提出的模型在检测人脸面具位置方面达到了 94% 的准确率,在识别面具人方面达到了 99.96% 的准确率。最后,详细介绍了与现有模型的比较,证明所提出的模型实现了最高的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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